STARS: framework for scheduling telescopes and space missions like CARMENES, TJO and ARIEL-ESA (Conference Presentation)

A. Garcia-Piquer, J. Colomé, J. Morales, I. Ribas, J. Guàrdia, J. Castroviejo, E. O. Wilhelmi, D. Torres, F. Vilardell
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Abstract

Efficient scheduling of astronomical surveys is a challenge with an increasing level of complexity as the observation strategies are becoming more sophisticated and operational costs are higher. In general, any kind of astronomical survey requires the execution of a huge number of observations fulfilling several constraints. The fulfillment and optimization of these constraints is a key factor for obtaining an efficient schedule with an adequate exploitation of the resources and with a high scientific return. In this contribution, we present the framework STARS (Scheduling Telescopes as Autonomous Robotic Systems) that computes optimal schedules for a variety of space- and ground-based infrastructures and scientific exploitation plans. STARS provides methods, tools and libraries for the definition of surveys (e.g., objects to observe, features of the objects, observation constraints), the definition of the observatories (e.g., location, number of telescopes, type of telescopes, sub-array configurations), the usage of astronomical calculations (e.g., object coordinates, object elevation, Sun and Moon position, Moon phase), and the application of schedulers (e.g., long-term, short-term) based on Genetic Algorithms (GAs) and astronomy-based heuristics. In STARS, two main types of schedulers are defined: long-term and short-term. The long-term scheduler is focused on scheduling object observations with a time scope ranging from one night to several months or years. It considers the observation constraints (hard-constraints) that can be predicted beforehand, and it optimizes some objectives (soft constraints) by using GAs. The execution of the long-term scheduler can be time-expensive, but it is not time-critical because it can be run before the start of the telescope operation, so it can be used as a standalone scheduling tool. On the other hand, the short-term scheduler computes in real-time the next observation (or scheduling block) to be executed by optimizing some soft constraints, fulfilling all the hard constraints and by considering all the observations previously executed. The short-term scheduler is time-critical and reacts in less than a second to the changing conditions (weather, errors, delays, targets of opportunity). It uses astronomy-based heuristics to repair the schedule obtained by the long-term scheduler, in order to keep the long-term perspective while avoiding intensive calculations. STARS has been successfully applied in several ground and space-based observatories. It is used to operate the CARMENES instrument (Calar Alto, carmenes.caha.es) and the Joan Oro robotic Telescope (www.oadm.cat). It is used to prototype the mission planning tool for the ARIEL M4-ESA candidate mission, and in prototypes for large ground-based installations, such i.e. the Cherenkov Telescope Array (CTA). Finally, STARS is also being extended to cover multi-observatory coordinated scheduling purposes, under the framework of the EU-H2020 ASTERICS project, and in order to promote multi-messenger science. The coordination of large observatories in the northern and southern hemispheres are used as test cases to evaluate the performance of such an innovative scheduling solution. In this sense, simultaneous observations or minimal time gap between observations are promoted resulting in a challenging and complex optimization problem that will open a new era for the optimal operation of large astrophysical infrastructures.
STARS:规划望远镜和空间任务的框架,如CARMENES, TJO和ARIEL-ESA(会议报告)
随着观测策略的日益复杂和操作成本的不断提高,有效的天文巡天调度是一个挑战。一般来说,任何一种天文调查都需要执行大量的观测,满足几个限制条件。这些约束条件的满足和优化是获得有效的资源开发和高科学回报的关键因素。在这篇文章中,我们提出了框架STARS(作为自主机器人系统的调度望远镜),它计算各种空间和地面基础设施和科学开发计划的最佳调度。STARS提供方法、工具和库,用于定义巡天(例如,要观测的物体、物体的特征、观测约束)、定义天文台(例如,位置、望远镜数量、望远镜类型、子阵列配置)、使用天文计算(例如,物体坐标、物体仰角、日月位置、月相)和应用调度程序(例如,长期、基于遗传算法(GAs)和基于天文学的启发式。在STARS中,定义了两种主要类型的调度器:长期调度器和短期调度器。长期调度器的重点是调度对象观测的时间范围从一个晚上到几个月或几年。它考虑了可以预先预测的观测约束(硬约束),并利用ga对一些目标(软约束)进行了优化。长期调度程序的执行可能会耗费时间,但它不是时间关键,因为它可以在望远镜操作开始之前运行,因此它可以作为一个独立的调度工具使用。另一方面,短期调度器通过优化一些软约束、满足所有硬约束和考虑之前执行的所有观察,实时计算要执行的下一个观察(或调度块)。短期调度程序是时间关键型的,并且在不到一秒的时间内对变化的条件(天气、错误、延迟、机会目标)做出反应。它使用基于天文学的启发式方法对长期调度程序获得的调度进行修复,在避免密集计算的同时保持长期的视角。STARS已成功应用于若干地面和天基天文台。它被用来操作CARMENES仪器(Calar Alto, CARMENES .caha.es)和Joan Oro机器人望远镜(www.oadm.cat)。它用于ARIEL M4-ESA候选任务的任务规划工具原型,以及大型地面装置的原型,例如切伦科夫望远镜阵列(CTA)。最后,在EU-H2020 ASTERICS项目的框架下,STARS也被扩展到涵盖多天文台协调调度目的,并促进多信使科学。北半球和南半球大型天文台的协调被用作测试案例,以评估这种创新调度解决方案的性能。从这个意义上说,促进同时观测或观测之间的最小时间间隔,从而产生一个具有挑战性和复杂性的优化问题,将为大型天体物理基础设施的优化运行开辟一个新的时代。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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